基于迭代学习的彩色图像传感器干扰补偿方法研究

IF 1.6 4区 工程技术 Q3 INSTRUMENTS & INSTRUMENTATION
Qiang Wen, Lele Chen, Jingwen Jin, Jianhao Huang, HeLin Wan
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引用次数: 0

摘要

目的图像传感器中始终存在固定模式噪声和随机模式噪声,它们会影响图像传感器的成像质量。光电转换过程中像素间的电荷扩散和颜色混合属于定模噪声。本研究旨在通过处理固定模式噪声来提高图像传感器的成像质量。设计/方法/途径作者通过对可擦除的长短期记忆递归神经网络模型进行迭代训练,获得了一种能够补偿图像噪声串扰的神经网络模型。为了克服平场光下图像传感器各模板上相同颜色像素缺乏差异的问题,研究人员将补偿前后的数据作为新的数据集,进一步对神经网络进行迭代训练。空间光谱中的中频和高频成分都有所增加,表明补偿后的图像边缘变化更快、更细致(Hinton 和 Salakhutdinov,2006 年;LeCun 等人,1998 年;Mohanty 等人,2016 年;Zang 等人,2023 年)、原创性/价值在本文中,作者利用迭代学习彩色图像像素串扰补偿方法,有效缓解了因滤波率不足导致的不完全混色问题,以及因相邻像素电位陷阱导致的光电荷横向扩散引起的电串扰问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on interference compensation methods for color image sensors based on iterative learning

Purpose

Fixed mode noise and random mode noise always exist in the image sensor, which affects the imaging quality of the image sensor. The charge diffusion and color mixing between pixels in the photoelectric conversion process belong to fixed mode noise. This study aims to improve the image sensor imaging quality by processing the fixed mode noise.

Design/methodology/approach

Through an iterative training of an ergoable long- and short-term memory recurrent neural network model, the authors obtain a neural network model able to compensate for image noise crosstalk. To overcome the lack of differences in the same color pixels on each template of the image sensor under flat-field light, the data before and after compensation were used as a new data set to further train the neural network iteratively.

Findings

The comparison of the images compensated by the two sets of neural network models shows that the gray value distribution is more concentrated and uniform. The middle and high frequency components in the spatial spectrum are all increased, indicating that the compensated image edges change faster and are more detailed (Hinton and Salakhutdinov, 2006; LeCun et al., 1998; Mohanty et al., 2016; Zang et al., 2023).

Originality/value

In this paper, the authors use the iterative learning color image pixel crosstalk compensation method to effectively alleviate the incomplete color mixing problem caused by the insufficient filter rate and the electric crosstalk problem caused by the lateral diffusion of the optical charge caused by the adjacent pixel potential trap.

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来源期刊
Sensor Review
Sensor Review 工程技术-仪器仪表
CiteScore
3.40
自引率
6.20%
发文量
50
审稿时长
3.7 months
期刊介绍: Sensor Review publishes peer reviewed state-of-the-art articles and specially commissioned technology reviews. Each issue of this multidisciplinary journal includes high quality original content covering all aspects of sensors and their applications, and reflecting the most interesting and strategically important research and development activities from around the world. Because of this, readers can stay at the very forefront of high technology sensor developments. Emphasis is placed on detailed independent regular and review articles identifying the full range of sensors currently available for specific applications, as well as highlighting those areas of technology showing great potential for the future. The journal encourages authors to consider the practical and social implications of their articles. All articles undergo a rigorous double-blind peer review process which involves an initial assessment of suitability of an article for the journal followed by sending it to, at least two reviewers in the field if deemed suitable. Sensor Review’s coverage includes, but is not restricted to: Mechanical sensors – position, displacement, proximity, velocity, acceleration, vibration, force, torque, pressure, and flow sensors Electric and magnetic sensors – resistance, inductive, capacitive, piezoelectric, eddy-current, electromagnetic, photoelectric, and thermoelectric sensors Temperature sensors, infrared sensors, humidity sensors Optical, electro-optical and fibre-optic sensors and systems, photonic sensors Biosensors, wearable and implantable sensors and systems, immunosensors Gas and chemical sensors and systems, polymer sensors Acoustic and ultrasonic sensors Haptic sensors and devices Smart and intelligent sensors and systems Nanosensors, NEMS, MEMS, and BioMEMS Quantum sensors Sensor systems: sensor data fusion, signals, processing and interfacing, signal conditioning.
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